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Can Activities of Human Daily Life be Recognized and Predicted?

机译:是否可以识别和预测人类的日常生活?

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Understanding Activities of Human Daily Life is a fundamental and essential AI problem for Ubiquitous Computing and Human-Computer Interaction. Activity inference has attracted enormous research on activity recognition from mobile sensor data. However, it is not clear how different signals can influence activity inference. To this end, we investigated the problem of activity recognition and prediction. Experiments showed that contextual signals like time, location, previous activity and related person are much more useful than demographical signals for activity recognition and prediction. We improved the accuracy of activity recognition by more than 15% comparing to existing work on the same dataset. What's more, we revealed that we can predict what will you do next with high accuracy.
机译:对于无处不在的计算和人机交互,了解人类日常生活活动是一个基本且必不可少的AI问题。活动推断已经吸引了来自移动传感器数据的活动识别方面的大量研究。但是,尚不清楚不同的信号如何影响活动推断。为此,我们研究了活动识别和预测的问题。实验表明,对于活动识别和预测,时间,位置,先前活动和相关人员等上下文信号比人口统计信号有用得多。与同一数据集上的现有工作相比,我们将活动识别的准确性提高了15%以上。更重要的是,我们透露我们可以准确地预测您下一步将要做的事情。

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